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Exposure Modeling of Benzene Exploiting Passive-Active Sampling Data

机译:苯利用被动主动采样数据的曝光模型

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The objective of the present study is the exploitation of active sampling personal exposure data in assessing the factors that affect exposure to benzene in combination with the widely accepted scheme of passive sampling-time microenvironment-activity diaries (TMAD). The campaign included personal exposure measurements with both passive and active sampling in several microenvironments, evaluation of TMAD kept by the volunteers, and a variety of environmental data (ambient air benzene determination, traffic and meteorological observations). Due to the relatively elevated benzene traffic emissions, average personal exposure was determined to be equal to 8.9 μg/m~3, ranging between 5 and 20 μg/m~3, which is a value highly related to the average urban concentration (9.2 μg/m~3). The information gained from TMAD was embedded (in terms of spatial and temporal distribution) into three zones respectively, in order to draw statistically significant conclusions about the exposure levels and the activity patterns. The contribution of the activities to the overall amount of exposure was further quantified and refined by active sampling measurements. These data revealed that driving in a traffic-congested road was the main activity leading to elevated exposurernlevels (up to 70 μg/m~3 ), followed by walking on the roadside of a congested road (up to 35 μg/m~3). Indoor exposure to benzene was in general lower than outdoor (indicating that traffic is the dominant source of benzene emissions in the wider area), and it was significantly affected by the presence of environmental tobacco smoke. The higher significance of the regression coefficients obtained by statistical analysis of the active sampling data was fundamental for the development of a regression-based prediction exposure model. The model was evaluated through comparison with the passive sampling data, which were considered as an unknown but realistic data exposure pattern. The model performed very well in terms of expressing the variance of the exposure data with an average score of R~2 equal to 0.935. All of the above indicate that active sampling is a necessary albeit more laborious tool that needs to be used as a complement to passive sampling for precise quantification of the factors determining personal exposure patterns.
机译:本研究的目的是结合广泛接受的被动采样时间微环境活性日记(TMAD)方案,利用主动采样个人暴露数据来评估影响苯暴露的因素。该活动包括在几个微环境中进行被动和主动采样的个人接触测量,志愿者对TMAD的评估以及各种环境数据(环境空气中苯的测定,交通和气象观测)。由于苯交通排放量相对较高,确定的个人平均暴露水平等于8.9μg/ m〜3,范围为5至20μg/ m〜3,与城市平均浓度(9.2μg / m〜3)。从TMAD获得的信息分别(按时空分布)嵌入三个区域,以便得出有关暴露水平和活动模式的统计学上重要的结论。通过主动抽样测量进一步量化和完善了活动对总暴露量的贡献。这些数据表明,在交通拥挤的道路上驾驶是导致暴露水平升高(高达70μg/ m〜3)的主要活动,然后在拥挤的道路上行走(高达35μg/ m〜3) 。室内苯的暴露总体上低于室外(表明交通是更广泛地区苯排放的主要来源),而且环境烟气的存在严重影响了苯的排放。通过对活动采样数据进行统计分析获得的回归系数的更高意义对于开发基于回归的预测暴露模型至关重要。通过与被动采样数据进行比较来评估模型,这被认为是未知但现实的数据暴露模式。该模型在表达曝光数据的方差方面表现非常好,R〜2的平均得分等于0.935。所有以上这些表明,主动采样是必需的,尽管更费力,但它需要用作被动采样的补充,以精确量化确定个人暴露模式的因素。

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